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ClinicalTrialsEstimation/r-analysis/Hierarchal_Logistic_prior.stan

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//
// This Stan program defines a simple model, with a
// vector of values 'y' modeled as normally distributed
// with mean 'mu' and standard deviation 'sigma'.
//
// Learn more about model development with Stan at:
//
// http://mc-stan.org/users/interfaces/rstan.html
// https://github.com/stan-dev/rstan/wiki/RStan-Getting-Started
//
// The input data is a vector 'y' of length 'N'.
data {
int<lower=1> D; //Number of parameters
int<lower=1> N; // Number of observations
int<lower=1> L; //Number of categories
int<lower=1, upper=L> ll[N];
row_vector[D] x[N];
real mu_m;
real mu_sd;
real sigma_shape;
real sigma_rate;
}
generated quantities {
//preallocate
real mu_prior[D];
real sigma_prior[D];
vector[D] beta_prior[L];
real p_prior[N]; // what I have priors about
//sample parameters
for (d in 1:D) {
mu_prior[d] = normal_rng(0,1);
sigma_prior[d] = gamma_rng(2,1);
}
for (l in 1:L) {
for (d in 1:D) {
beta_prior[l,d] = normal_rng(mu_prior[d],sigma_prior[d]);
}
}
//generate probabilities
{
vector[D] b_prior[N];//local var
for (n in 1:N){
b_prior[n] = beta_prior[ll[n]];
p_prior[n] = inv_logit( x[n] * b_prior[n] );
}
}
}